The structure of networks that evolve under a combination of growth, via node addition and random attachment, and contraction, via random node deletion
Barak Budnick, Ofer Biham, Eytan Katzav

TL;DR
This paper analytically investigates the evolving structure of networks undergoing simultaneous growth through node addition and contraction via node deletion, revealing how the degree distribution changes under different growth-contraction balances.
Contribution
It provides a closed-form expression for the time-dependent degree distribution in networks with combined growth and contraction processes, extending understanding of network evolution dynamics.
Findings
Pure growth leads to exponential degree distribution.
Mixed processes produce Poisson-like degree distributions.
Different regimes of contraction affect convergence to steady state.
Abstract
We present analytical results for the emerging structure of networks that evolve via a combination of growth (by node addition and random attachment) and contraction (by random node deletion). To this end we consider a network model in which at each time step a node addition and random attachment step takes place with probability and a random node deletion step takes place with probability . The balance between the growth and contraction processes is captured by the parameter . The case of pure network growth is described by . In case that the rate of node addition exceeds the rate of node deletion and the overall process is of network growth. In the opposite case, where , the overall process is of network contraction, while in the special case of the expected size of the network remains fixed,…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Stochastic processes and statistical mechanics
